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Publication Years
1
2889
6391
748
38
4
1
1
Category
3736
662
548
476
401
124
100
10
3
Toolboxes
957
796
758
521
433
370
308
296
273
262
228
225
224
197
180
151
146
133
59
59
58
55
50
9
3
2
Introduction
In 2017, development assistance for health (DAH) comprised 5.3% of total health spending in lowincome countries. Despite the key role DAH plays in global health-spending, little is known about the characteristics of assistance that may be associated with committed assistance that is a
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ctually disbursed. In this analysis, we examine associations between these characteristics and disbursement of committed assistance.
Methods
We extracted data from the Creditor Reporting System of the Organization for Economic Co-operation and Development, Institute for Health Metrics and Evaluation, and the WHO National Health Accounts database. Factors examined were off-budget assistance, administrative assistance, publicly sourced assistance and assistance to health systems strengthening. Recipient-country characteristics examined were perceived level of corruption, civil fragility and gross domestic product per capita (GDPpc). We used linear regression methods for panel of data to assess the proportion of committed aid that was disbursed for a given country-year, for each data source.
Results
Factors that were associated with a higher disbursement rates include off-budget aid (p<0.001), lower administrative expenses (p<0.01), lower perceived corruption in recipient country (p<0.001), lower fragility in recipient country (p<0.05) and higher GDPpc (p<0.05).
Conclusion
Substantial gaps remain between commitments and disbursements. Characteristics of assistance (administrative, publicly sourced) and indicators of government transparency and fragility are also important drivers associated with disbursement of DAH. There remains a continued need for better aid flow reporting standards and clarity around aid types for better measurement of DAH.
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Financial Assistance for Health Security: Effects of International Financial Assistance on Capacities for Preventing, Detecting, and Responding to Public Health Emergencies
Boyce, M.; Meyer, M.; Kraemer, J.; Katz, R.
International Journal of Health Policy and Management IJHPM
(2022)
CC
Health security funding is intended to improve capacities for preventing, detecting, and responding to public health emergencies. Recent years have witnessed substantial increases in the amounts of donor financial assistance to health security from countries, philanthropies, and other development pa
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rtners. To date, no work has examined the effects of assistance on health security capacity development over time. This paper presents an analysis of the time-lagged effects of assistance for health security (AHS) on levels of capacity.
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The guide to implementing the One Health Joint Plan of Action (OH JPA) at national level provides practical guidance on how countries can adopt and adapt the OH JPA to strengthen and support national One Health action.
Building on the OH JPA theory of change, this guide describes three pathways a
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nd five key steps to implement the OH JPA at national level:
Pathway 1 -- Governance, policy, legislation, financing and advocacy
Pathway 2 -- Organizational and institutional development, implementation and sectoral integration
Pathway 3 -- Data, evidence, information systems and knowledge exchange.
The stepwise approach comprises:
Situation analysis including stakeholder mapping and review of existing assessment results
Set-up/strengthening of a multisectoral, One Health coordination mechanism
Planning for implementation, including activity prioritization and leveraging of resources
Implementation of national One Health action plans
Review, sharing and incorporation of lessons learned.
more
Development assistance for health (DAH) has increased substantially in recent years and is seen as important to the improvement of health and health systems in developing countries. As a result, there has been increasing interest in tracking and understanding these resource flows from the global hea
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lth community. A number of datasets, each with its own strengths and weaknesses, are available to track DAH. In this article we review the available datasets on DAH and summarize the strengths and weaknesses of each of these datasets to help researchers make the best choice of which to use to inform their analysis. Finally, we also provide recommendations about how each of these datasets could be improve
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Each year, ≈795 000 individuals in the United States experience a stroke, of which 87% (690 000) are ischemic and 185 000 are recurrent.1 Approximately 240 000 individuals experience a transient ischemic attack (TIA) each year.2 The risk of recurrent stroke or TIA is high but can be mitiga
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ted with appropriate secondary stroke prevention. In fact, cohort studies have shown a reduction in recurrent stroke and TIA rates in recent years as secondary stroke prevention strategies have improved.3,4 A meta-analysis of randomized controlled trials (RCTs) of secondary stroke prevention therapies published from 1960 to 2009 showed a reduction in annual stroke recurrence from 8.7% in the 1960s to 5.0% in the 2000s, with the reduction driven largely by improved blood pressure (BP) control and use of antiplatelet therapy.5 The changes may have been influenced by changes in diagnostic criteria and differing sensitivities of diagnostic tests over the years.
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This document provides detailed guidance on laboratory testing for suspected diphtheria cases during significant outbreaks or in low-resource settings. It aims to supplement and build on other existing WHO guidance documents on surveillance standards, diagnostics and research on Corynebacterium by p
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roviding key considerations for laboratories that allow the rationalization and optimization of testing during outbreaks. The recommendations given here have been prepared by WHO in consultation with, and reviewed by, global experts with experience in laboratory analysis of Corynebacterium species and in outbreak settings, or with expertise in developing new technologies for diphtheria research and diagnosis. Unless otherwise stated, the considerations provided apply to diphtheria outbreaks caused by toxin-producing C. diphtheriae with a classical respiratory diphtheria presentation.
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Over the past two decades, China has become a distinctive and increasingly important donor of development assistance for health (DAH). However, little is known about what factors influence China’s priority-setting for DAH. In this study, we provide an updated
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analysis of trends in the priorities of Chinese DAH and compare them to comparable trends among OECD Development Assistance Committee (DAC) donors using data from the AidData’s Global Chinese Development Finance Dataset (2000–2017, version 2.0) and the Creditor Reporting System (CRS) database (2000–2017). We also analyse Chinese medical aid exports before and after the start of the COVID-19 pandemic using a Chinese Aid Exports Database.
more
In 2015, the world reaffirmed its commitment to sustainable development by endorsing the 2030 Agenda for Sustainable Development and its 17 SDGs (2030 Agenda). To reach older people – an important, heterogeneous and growing population – and to create visibility in global and national policy and
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accountability mechanisms, a closer examination is needed of the kinds of data collection mechanisms and methods, and types of data collected to measure each SDG indicator relevant for older persons, including existing levels of disaggregation, analysis and dissemination.
more
In 2015, the world reaffirmed its commitment to sustainable development by endorsing the 2030 Agenda for Sustainable Development and its 17 SDGs (2030 Agenda). To reach older people – an important, heterogeneous and growing population – and to create visibility in global and national policy and
...
accountability mechanisms, a closer examination is needed of the kinds of data collection mechanisms and methods, and types of data collected to measure each SDG indicator relevant for older persons, including existing levels of disaggregation, analysis and dissemination.
more
Unmet mental health needs in the Region of the Americas are a leading source of morbidity and mortality, which result in tremendous health, social, and economic consequences. The COVID-19 pandemic has exacerbated the mental health crisis in the Region, necessitating urgent action at the highest leve
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ls of government and across sectors to build back better mental health now and for the future. This landmark report is the result of the PAHO High-Level Commission on Mental Health and COVID-19. It provides an analysis of the mental health situation in the Region, followed by a series of recommendations and corresponding actions to support countries in the Americas to prioritize and advance mental health using human rights- and equity-based approaches.
more
Since the Alma Ata Declaration in 1978, community health volunteers (CHVs) have been at the forefront, providing health services, especially to underserved communities, in low-income countries. However, consolidation of CHVs position within formal health systems has proved to be complex and continue
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s to challenge countries, as they devise strategies to strengthen primary healthcare. Malawi’s community health strategy, launched in 2017, is a novel attempt to harmonise the multiple health
service structures at the community level and strengthen service delivery through a team-based approach. The core community health team (CHT) consists of health surveillance assistants (HSAs), clinicians, environmental health officers and CHVs. This paper reviews Malawi’s strategy, with particular focus on the interface between HSAs, volunteers in community-based programmes and
the community health team. Our analysis identified key challenges that may impede the strategy’s implementation:
(1) inadequate training, imbalance of skill sets within CHTs and unclear job descriptions for CHVs; (2) proposed community-level interventions require expansion of pre-existing roles for most CHT members; and (3) district authorities may face challenges meeting financial obligations and filling community-level positions. For effective implementation, attention and further deliberation is needed on the appropriate forms of CHV support, CHT composition with possibilities of co-opting trained CHVs
from existing volunteer programmes into CHTs, review of CHT competencies and workload, strengthening coordination and communication across all community actors, and financing mechanisms. Policy support through the development of an addendum to the strategy, outlining opportunities for task-shifting between CHT members, CHVs’ expected duties and interactions with paid CHT personnel is recommended.
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The World Health Organization's Global Health Observatory (GHO) provides comprehensive data on noncommunicable diseases (NCDs), including cardiovascular diseases, cancers, chronic respiratory diseases, and diabetes. The portal offers country-specific statistics on NCD mortality rates, risk factors,
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and national responses, facilitating analysis and comparison across regions. It also includes resources such as publications and tools to support global efforts in NCD prevention and control.
more
The Noncommunicable Diseases (NCD) Data Portal provides comprehensive information on NCDs, including cardiovascular diseases, cancer, diabetes, and chronic respiratory diseases. It offers country-specific data on mortality rates, risk factors, and national responses, enabling
...
analysis and comparison across regions. The portal also includes resources such as publications and tools to support global efforts in NCD prevention and control.
more
The Noncommunicable Diseases (NCD) Data Portal provides comprehensive information on NCDs, including cardiovascular diseases, cancer, diabetes, and chronic respiratory diseases. It offers country-specific data on mortality rates, risk factors, and national responses, enabling
...
analysis and comparison across regions. The portal also includes resources such as publications and tools to support global efforts in NCD prevention and control.
more
The Noncommunicable Diseases (NCD) Data Portal provides comprehensive information on NCDs, including cardiovascular diseases, cancer, diabetes, and chronic respiratory diseases. It offers country-specific data on mortality rates, risk factors, and national responses, enabling
...
analysis and comparison across regions. The portal also includes resources such as publications and tools to support global efforts in NCD prevention and control.
more
The Noncommunicable Diseases (NCD) Data Portal offers comprehensive data on NCDs such as cardiovascular diseases, cancer, diabetes, and chronic respiratory diseases. It provides country-specific information on NCD mortality rates, risk factors, and national responses, facilitating
...
analysis and comparison across regions. The portal also includes resources like publications and tools to support global efforts in NCD prevention and control.
more
The Noncommunicable Diseases (NCD) Data Portal offers comprehensive data on NCDs such as cardiovascular diseases, cancer, diabetes, and chronic respiratory diseases. It provides country-specific information on NCD mortality rates, risk factors, and national responses, facilitating
...
analysis and comparison across regions. The portal also includes resources like publications and tools to support global efforts in NCD prevention and control.
more
The Noncommunicable Diseases (NCD) Data Portal offers comprehensive data on NCDs such as cardiovascular diseases, cancer, diabetes, and chronic respiratory diseases. It provides country-specific information on NCD mortality rates, risk factors, and national responses, facilitating
...
analysis and comparison across regions. The portal also includes resources like publications and tools to support global efforts in NCD prevention and control.
more
The Noncommunicable Diseases (NCD) Data Portal offers comprehensive data on NCDs such as cardiovascular diseases, cancer, diabetes, and chronic respiratory diseases. It provides country-specific information on NCD mortality rates, risk factors, and national responses, facilitating
...
analysis and comparison across regions. The portal also includes resources like publications and tools to support global efforts in NCD prevention and control.
more
The Noncommunicable Diseases (NCD) Data Portal offers comprehensive data on NCDs such as cardiovascular diseases, cancer, diabetes, and chronic respiratory diseases. It provides country-specific information on NCD mortality rates, risk factors, and national responses, facilitating
...
analysis and comparison across regions. The portal also includes resources like publications and tools to support global efforts in NCD prevention and control.
more